揭示时间敏感院前呼吸紧急情况的非线性模式:一项探索性机器学习研究。

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS
Peter Hill, Daniel Jonsson, Jakob Lederman, Peter Bolin, Veronica Vicente
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引用次数: 0

摘要

背景:及时院前护理对高危时间敏感(HRTS)患者至关重要。然而,呼吸问题患者的反应时间和人口因素之间的相互作用仍然没有得到充分的了解。在这项探索性研究中,我们应用机器学习(ML)来研究紧急医疗响应时间、年龄和性别如何共同影响遇到HRTS条件的概率。方法:对2017-2022年斯德哥尔摩132395例院前任务进行回顾性观察分析。训练多个ML模型、随机森林、梯度增强、神经网络和逻辑回归来探测潜在的非线性模式和相互作用,而不是以预测准确性为主要目标。使用敏感性、特异性和曲线下面积(AUC)测量来评估模型的性能。然而,部分依赖(PD)和个体条件期望(ICE)图是说明反应时间、年龄和性别如何影响HRTS可能性的主要工具。结果:PD和ICE图显示,年龄较大(60岁以下)与HRTS的高概率一致相关。此外,60岁以上的患者在延长反应时间超过2小时时表现出复杂的、上升的风险。梯度增强提供了最好的(虽然适度的)分类指标,AUC为0.66,f1得分为0.55。我们强调,这些指标,虽然必要的完整性,是次要的,我们的目标,表征非线性关系。结论:我们的研究结果强调了ML在识别时间敏感呼吸紧急情况的反应时间、年龄和性别之间的微妙关系和相互作用方面的探索性价值。这些结果突出了改进调度协议、开发以年龄和性别为重点的筛查问题以及在延长等待时间后重新访问低优先级呼叫的机会。未来的工作应该纳入更丰富的数据,并完善这些见解,以用于潜在的预测用途。临床试验号:不适用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncovering nonlinear patterns in time-sensitive prehospital breathing emergencies: an exploratory machine learning study.

Background: Timely prehospital care is crucial for patients presenting with high-risk time-sensitive (HRTS) conditions. However, the interplay between response time and demographic factors in patients with breathing problems remains insufficiently understood. In this exploratory study, we applied machine learning (ML) to examine how emergency medical response time, age, and sex jointly influence the probability of encountering HRTS conditions.

Methods: A retrospective observational analysis was conducted on 132,395 prehospital missions in Stockholm (2017-2022). Multiple ML models, random forest, gradient boosting, neural networks, and logistic regression were trained to probe potential nonlinear patterns and interactions, not with the primary goal of predictive accuracy. Model performance was evaluated using sensitivity, specificity, and area under the curve (AUC) measures. However, partial dependence (PD) and individual conditional expectation (ICE) plots were the principal tools illustrating how response time, age, and sex shape HRTS likelihood.

Results: PD and ICE plots revealed that older age (> 60 years) was consistently associated with a higher probability of HRTS. Moreover, patients over 60 years displayed a complex, rising risk at prolonged response times exceeding two hours. Gradient boosting offered the best (though modest) classification metrics, with an AUC of 0.66 and an F1-score of 0.55. We emphasize that these metrics, while necessary for completeness, were secondary to our aim of characterizing nonlinear relationships.

Conclusions: Our findings underscore the exploratory value of ML in identifying subtle relationships and interactions among response time, age, and sex for time-sensitive breathing emergencies. These results highlight opportunities to refine dispatch protocols, develop age- and sex-focused screening questions, and revisit lower-priority calls after extended wait times. Future work should incorporate richer data and refine these insights for potential predictive use.

Clinical trial number: Not applicable.

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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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